Likelihood-free inference for simulator-based models is an emerging methodological branch of statistics which has attracted considerable attention in applications across diverse fields such as population genetics, astronomy and economics. Recently, the power of statistical classifiers has been harnessed in likelihood-free inference to obtain either point estimates or even posterior distributions of model parameters. Here we introduce PYLFIRE, an open-source Python implementation of the inference method LFIRE (likelihood-free inference by ratio estimation) that uses penalised logistic regression. PYLFIRE is made available as part of the general ELFI inference software http://elfi.ai to benefit both the user and developer communities for like...
Statistical analysis of High Energy Physics (HEP) data relies on quantifying the compatibility of ob...
The BumpHunter algorithm is a well known test statistic designed to find a excess (or a deficit) in ...
Probabilistic programming is becoming an attractive approach to probabilistic machine learning. Thro...
Engine for Likelihood-Free Inference (ELFI) is a Python software library for performinglikelihood-fr...
Likelihood-free inference toolbox. Supported features include: Composition and fitting of distrib...
Active inference is an account of cognition and behavior in complex systems which brings together ac...
Engine for Likelihood-Free Inference (ELFI) is a Python software library for performing likelihood-f...
The popularity of Bayesian statistical methods has increased dramatically in recent years across man...
Probabilistic programming allows users to model complex probability distributions and perform infere...
In this thesis we present a new likelihood-free inference method for simulator-based models. A simul...
Engine for Likelihood-Free Inference (ELFI) is a Python software library for performing likelihood-f...
Summary:Biological models contain many parameters whose values are difficult to measure directly via...
Statistical methods of inference typically require the likelihood function to be computable in a rea...
Scientific fields increasingly need to analyse complex phenomenon where a statistical model is not a...
Summary: Gap-filling is a necessary step to produce quality genome-scale metabolic reconstructions c...
Statistical analysis of High Energy Physics (HEP) data relies on quantifying the compatibility of ob...
The BumpHunter algorithm is a well known test statistic designed to find a excess (or a deficit) in ...
Probabilistic programming is becoming an attractive approach to probabilistic machine learning. Thro...
Engine for Likelihood-Free Inference (ELFI) is a Python software library for performinglikelihood-fr...
Likelihood-free inference toolbox. Supported features include: Composition and fitting of distrib...
Active inference is an account of cognition and behavior in complex systems which brings together ac...
Engine for Likelihood-Free Inference (ELFI) is a Python software library for performing likelihood-f...
The popularity of Bayesian statistical methods has increased dramatically in recent years across man...
Probabilistic programming allows users to model complex probability distributions and perform infere...
In this thesis we present a new likelihood-free inference method for simulator-based models. A simul...
Engine for Likelihood-Free Inference (ELFI) is a Python software library for performing likelihood-f...
Summary:Biological models contain many parameters whose values are difficult to measure directly via...
Statistical methods of inference typically require the likelihood function to be computable in a rea...
Scientific fields increasingly need to analyse complex phenomenon where a statistical model is not a...
Summary: Gap-filling is a necessary step to produce quality genome-scale metabolic reconstructions c...
Statistical analysis of High Energy Physics (HEP) data relies on quantifying the compatibility of ob...
The BumpHunter algorithm is a well known test statistic designed to find a excess (or a deficit) in ...
Probabilistic programming is becoming an attractive approach to probabilistic machine learning. Thro...